通过机器学习程序重新估计巴西的污染避风港假设

IF 1.7 4区 经济学 Q3 DEVELOPMENT STUDIES
Emmanuel Uche, Philip Chimobi Omoke, Charles Silva-Opuala, Mamdouh Abdulaziz Saleh Al-Faryan
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引用次数: 0

摘要

在本研究中,我们在控制收入、可再生能源和自然资源枯竭影响的同时,重新审视了巴西近五十年(1970-2019 年)的污染天堂和光环假说。为获得更清晰的见解,研究采用了传统的自回归分布滞后(ARDL)和增强型核正则化最小二乘法(KRLS)技术。值得注意的是,KRLS 是一种灵活的机器学习非线性分析技术,它既能解释平均值上的回归子和回归因子的相互作用,也能解释一系列量级上的回归子和回归因子的相互作用。通过边界检验和拜尔-汉克程序确定协整关系后,得出了以下经验结果:ARDL 结果表明,在短期和长期运行中,巴西都接受了污染避风港假说。然而,KRLS 技术显示,外国直接投资(FDI)可以在二氧化碳排放量分布的 25 分位数范围内提高环境质量(污染晕)。然而,在第 50 和第 70 分位数,污染天堂假说得到了纠正。这表明需要采取不同的政策选择,以确保外国直接投资的持续流入,同时不影响环境质量。此外,在控制变量中,国内生产总值(GDP)的影响揭示了一个 U 型环境库兹涅茨曲线(EKC)结构;可再生能源确保在任何时候都有一个清洁的环境,而资源租金只确保在分布的第 25 和第 50 量级有一个清洁的环境。巴西提供了可实现清洁环境的政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Re-estimating the pollution haven–halo hypotheses for Brazil via a machine learning procedure

In this study, we re-examined the pollution haven and halo hypotheses in Brazil for approximately five decades (1970–2019) while controlling for the effects of income, renewable energy and natural resource depletion. For clearer insights, the study employed both the conventional autoregressive distributed lag (ARDL) and the enhanced kernel regularized least squares (KRLS) techniques. Notably, the KRLS is a flexible machine learning nonlinear analytical technique that explains the interactions of the regressand and the regressors both at the average and across a range of quantiles. After ascertaining cointegration through the bounds tests and the Bayer–Hanck procedures, the following empirical outcomes emerged: The ARDL result suggests the acceptance of the pollution haven hypothesis in Brazil in both the short and long runs. However, the KRLS technique reveals that foreign direct investment (FDI) could enhance environmental quality (pollution halo) within the 25th quantile of the distributions of CO2 emissions. However, at the 50th and 70th quantiles, the pollution haven hypothesis is rectified. This suggests the adoption of varying policy options to ensure continuous inflows of FDI without compromising environmental quality. Additionally, among the control variables, a U-shaped environmental Kuznets curve (EKC) structure is revealed from the influence of gross domestic product (GDP); renewable energy ensures a clean environment at all times, while resource rent ensures a clean environment only at the 25th and 50th quantiles of the distributions. Policies that could lead to clean environments in Brazil have been provided.

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来源期刊
CiteScore
2.40
自引率
0.00%
发文量
109
期刊介绍: The Journal aims to publish the best research on international development issues in a form that is accessible to practitioners and policy-makers as well as to an academic audience. The main focus is on the social sciences - economics, politics, international relations, sociology and anthropology, as well as development studies - but we also welcome articles that blend the natural and social sciences in addressing the challenges for development. The Journal does not represent any particular school, analytical technique or methodological approach, but aims to publish high quality contributions to ideas, frameworks, policy and practice, including in transitional countries and underdeveloped areas of the Global North as well as the Global South.
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